test_app_utils.py 4.2 KB

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  1. import math
  2. import os
  3. import sys
  4. import unittest
  5. sys.path.insert(0, os.path.dirname(os.path.dirname(os.path.abspath(__file__))))
  6. import pandas as pd
  7. from app_utils import (
  8. apply_defect_filters,
  9. build_diagnostic_dashboard,
  10. calculate_kpis,
  11. calculate_spc_metrics,
  12. )
  13. class AppUtilsTest(unittest.TestCase):
  14. def setUp(self):
  15. self.df = pd.DataFrame(
  16. {
  17. "defect_id": ["D1", "D2", "D3", "D4"],
  18. "panel_id": ["P1", "P2", "P2", "P3"],
  19. "batch_id": ["B1", "B1", "B2", "B2"],
  20. "equipment_id": ["E1", "E1", "E2", "E2"],
  21. "seat_id": ["S1", "S2", "S1", "S2"],
  22. "timestamp": pd.to_datetime(
  23. [
  24. "2026-04-01 00:00:00",
  25. "2026-04-01 23:59:59",
  26. "2026-04-02 12:00:00",
  27. "2026-04-03 00:00:01",
  28. ]
  29. ),
  30. "defect_type": ["划痕", "亮点", "划痕", "暗点"],
  31. "severity": ["严重", "轻微", "中等", "严重"],
  32. "shift": ["白班", "夜班", "白班", "白班"],
  33. "day": ["2026-04-01", "2026-04-01", "2026-04-02", "2026-04-03"],
  34. }
  35. )
  36. def test_date_filter_includes_full_end_date(self):
  37. filtered = apply_defect_filters(
  38. self.df,
  39. start_date=pd.Timestamp("2026-04-01"),
  40. end_date=pd.Timestamp("2026-04-01"),
  41. selected_types=["划痕", "亮点", "暗点"],
  42. selected_batches=["B1", "B2"],
  43. selected_equipment=["E1", "E2"],
  44. selected_seats=["S1", "S2"],
  45. selected_shift="全部",
  46. selected_severity="全部",
  47. )
  48. self.assertEqual(["D1", "D2"], filtered["defect_id"].tolist())
  49. def test_kpis_use_same_filter_scope_for_total_panels(self):
  50. filtered = apply_defect_filters(
  51. self.df,
  52. start_date=pd.Timestamp("2026-04-01"),
  53. end_date=pd.Timestamp("2026-04-02"),
  54. selected_types=["划痕"],
  55. selected_batches=["B1", "B2"],
  56. selected_equipment=["E1", "E2"],
  57. selected_seats=["S1"],
  58. selected_shift="全部",
  59. selected_severity="全部",
  60. )
  61. kpis = calculate_kpis(self.df, filtered)
  62. self.assertEqual(2, kpis["total_panels_inspected"])
  63. self.assertEqual(2, kpis["defective_panels"])
  64. self.assertEqual(0.0, kpis["yield_rate"])
  65. def test_spc_metrics_clamp_estimated_rate_to_valid_probability(self):
  66. metrics = calculate_spc_metrics(self.df)
  67. self.assertTrue(math.isfinite(metrics["p_bar"]))
  68. self.assertTrue(math.isfinite(metrics["ucl"]))
  69. self.assertTrue(math.isfinite(metrics["lcl"]))
  70. self.assertLessEqual(metrics["daily"]["defect_rate"].max(), 1.0)
  71. def test_diagnostic_dashboard_ranks_root_cause_candidates(self):
  72. dashboard = build_diagnostic_dashboard(self.df)
  73. self.assertEqual("严重", dashboard["severity_level"])
  74. self.assertEqual("E1 / S1", dashboard["root_causes"].iloc[0]["根因候选"])
  75. self.assertEqual("划痕", dashboard["top_defect_type"])
  76. self.assertIn("优先排查", dashboard["primary_recommendation"])
  77. def test_diagnostic_dashboard_reports_baseline_lift(self):
  78. rows = []
  79. for i in range(10):
  80. rows.append(
  81. {
  82. "defect_id": f"D{i}",
  83. "panel_id": f"P{i}",
  84. "batch_id": "B1",
  85. "equipment_id": "E1",
  86. "seat_id": "S-hot" if i < 8 else "S-cold",
  87. "timestamp": pd.Timestamp("2026-04-01"),
  88. "defect_type": "气泡",
  89. "severity": "严重" if i < 2 else "轻微",
  90. "shift": "白班",
  91. "day": "2026-04-01",
  92. }
  93. )
  94. df = pd.DataFrame(rows)
  95. dashboard = build_diagnostic_dashboard(df)
  96. top = dashboard["root_causes"].iloc[0]
  97. self.assertEqual("E1 / S-hot", top["根因候选"])
  98. self.assertGreater(top["异常倍数"], 1.0)
  99. if __name__ == "__main__":
  100. unittest.main()